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On Optimal Probing for Delay and Loss Measurement

机译:关于延迟损耗测量的最佳探测

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Packet delay and loss are two fundamental measures of performance. Using active probing to measure delay and loss typically involves sending Poisson probes, on the basis of the PASTA property (Poisson Arrivals See Time Averages), which ensures that Poisson probing yields unbiased estimates. Recent work, however, has questioned the utility of PASTA for probing and shown that, for delay measurements, i) a wide variety of processes other than Poisson can be used to probe with zero bias and ii) Poisson probing does not necessarily minimize the variance of delay estimates. In this paper, we determine optimal probing processes that minimize the mean-square error of measurement estimates for both delay and loss. Our contributions are twofold. First, we show that a family of probing processes, specifically Gamma renewal probing processes, has optimal properties in terms of bias and variance, The optimality result is general, and only assumes that the target process we seek to optimally measure via probing, such as a loss or delay process, has a convex auto-covariance function. Second, we use empirical datasets to demonstrate the applicability of our results in practice, specifically to show that the convexity condition holds true and that Gamma probing is indeed superior to Poisson probing. Together, these results lead to explicit guidelines on designing the best probe streams for both delay and loss estimation.
机译:数据包延迟和损失是两个性能的基本措施。使用主动探测来测量延迟和损失通常涉及在意大利面属性(泊松港认为时间平均值)的基础上涉及发送泊松探针,这确保了泊松探测产生了无偏估计。然而,最近的工作质疑意大利面探测并表明,对于延迟测量,i)泊松之外的各种过程可用于探测零偏压,ii)泊松探测不一定最小化方差最小化延迟估计。在本文中,我们确定最佳探测过程,最小化延迟和损耗的测量估计的平均方误差。我们的贡献是双重的。首先,我们表明,在偏差和方差方面具有最佳性能,最优性结果,概述的探测过程,具有最佳特性,并且仅假定我们寻求通过探测最佳测量的目标过程,例如丢失或延迟过程具有凸自动协方差函数。其次,我们使用经验数据集来证明我们在实践中的结果的适用性,特别是表明凸起条件保持真实,并且伽马探测确实优于泊松探测。在一起,这些结果导致明确指导设计延迟和损失估计的最佳探针流。

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